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Combat Identification Modeling Using Neural Networks Techniques

Jazyk AngličtinaAngličtina
Kniha Brožovaná
Kniha Combat Identification Modeling Using Neural Networks Techniques Changwook Lim
Libristo kód: 49409251
Nakladateľstvo Creative Media Partners, LLC, máj 2025
The purposes of this research were: (1) validating Kim's (2007) simulation method by applying analyt... Celý popis
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The purposes of this research were: (1) validating Kim's (2007) simulation method by applying analytic methods and (2) comparing the two different Robust Parameter Design methods with three measures of performance (label accuracy for enemy, friendly, and clutter). Considering the features of CID, input variables were defined as two controllable (threshold combination of detector and classifier) and three uncontrollable (map size, number of enemies and friendly). The first set of experiments considers Kim's method using analytical methods. In order to create response variables, Kim's method uses Monte Carlo simulation. The output results showed no difference between simulation and the analytic method. The second set of experiments compared the measures of performance between a standard RPD used by Kim and a new method using Artificial Neural Networks (ANNs). To find optimal combinations of detection and classification thresholds, Kim's model uses regression with a combined array design, whereas the ANNs method uses ANN with a crossed array design. In the case of label accuracy for enemy, Kim's solution showed the higher expected value, however it also showed a higher variance. Additionally, the model's residuals were higher for Kim's model.

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Celý názov Combat Identification Modeling Using Neural Networks Techniques
Jazyk Angličtina
Väzba Kniha - Brožovaná
Dátum vydania 2025
Počet strán 120
EAN 9781025136073
ISBN 1025136071
Libristo kód 49409251
Váha 177
Rozmery 156 x 234 x 6
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